利用遗传算法优化并行编译技术

Lin Han, Pengyan Yan
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引用次数: 0

摘要

本文探讨了自动并行化编译技术中固定线程分配导致并行效率低的问题。作者采用遗传算法来确定单个可并行循环的最佳线程数。然后,他们利用迭代编译技术为每个可并行循环结构生成合适的线程数,从而提高了自动并行化编译的效率。所提出的方法在 SPEC CPU2006 测试套件的十个基准中平均提高了 26% 的性能,在 NPB3.4.2 测试套件中总体性能提高了 3.7%,从而表明了该方法的可行性和有效性。本文概述的方法可作为提高自动并行计算效率和促进自动并行计算技术发展的基准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimization of parallel compilation techniques using genetic algorithms
This paper addresses the issue of low parallel efficiency resulting from fixed thread allocation in automatic parallelization compilation technology. The authors employ a genetic algorithm to determine the optimal number of threads for individual parallelizable loops. They then utilize iterative compilation techniques to produce the suitable number of threads for each parallelizable loop structure, thereby enhancing the efficiency of automatic parallelization compilation. The proposed method demonstrated an average performance enhancement of 26% across ten benchmarks in the SPEC CPU2006 test suite and an overall performance improvement of 3.7% in the NPB3.4.2 test suite, thereby indicating the viability and efficacy of the approach. The approach outlined in this paper can be utilized as a benchmark for enhancing the effectiveness of automated parallel computing and promoting the progression of automated parallel computing technology.
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